Prediction Framework on Early Urine Infection in IoT–Fog Environment Using XGBoost Ensemble Model

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Abstract

Urine infections are one of the most prevalent concerns for the healthcare industry that may impair the functioning of the kidney and other renal organs. As a result, early diagnosis and treatment of such infections are essential to avert any future complications. Conspicuously, in the current work, an intelligent system for the early prediction of urine infections has been presented. The proposed framework uses IoT-based sensors for data collection, followed by data encoding and infectious risk factor computation using the XGBoost algorithm over the fog computing platform. Finally, the analysis results along with the health-related information of users are stored in the cloud repository for future analysis. For performance validation, extensive experiments have been carried out, and results are calculated based on real-time patient data. The statistical findings of accuracy (91.45%), specificity (95.96%), sensitivity (84.79%), precision (95.49%), and f-score(90.12%) reveal the significantly improved performance of the proposed strategy over other baseline techniques.

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APA

Gupta, A., & Singh, A. (2023). Prediction Framework on Early Urine Infection in IoT–Fog Environment Using XGBoost Ensemble Model. Wireless Personal Communications, 131(2), 1013–1031. https://doi.org/10.1007/s11277-023-10466-5

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